Empowering you to use machine learning to get valuable insights from data.
- 🔥 Implement basic ML algorithms and deep neural networks with PyTorch.
- 🖥️ Run everything on the browser without any set up using Google Colab.
- 📦 Learn object-oriented ML to code for products, not just tutorials.
Basics | Deep Learning | Advanced | Topics |
---|---|---|---|
📓 Notebooks | 🔥 PyTorch | 📚 Advanced RNNs | 📸 Computer Vision |
🐍 Python | 🎛️ Multilayer Perceptrons | 🏎️ Highway and Residual Networks | ⏰ Time Series Analysis |
🔢 NumPy | 🔎 Data & Models | 🔮 Autoencoders | 🏘️ Topic Modeling |
🐼 Pandas | 📦 Object-Oriented ML | 🎭 Generative Adversarial Networks | 🛒 Recommendation Systems |
📈 Linear Regression | 🖼️ Convolutional Neural Networks | 🐝 Spatial Transformer Networks | 🗣️ Pretrained Language Modeling |
📊 Logistic Regression | 📝 Embeddings | 🤷 Multitask Learning | |
🌳 Random Forests | 📗 Recurrent Neural Networks | 🎯 Low Shot Learning | |
💥 KMeans Clustering | 🤖 Reinforcement Learning |
- Access the notebooks in the
notebooks
directory in this repo. - You can run these notebook on Google Colab (recommended) or on your local machine.
- Click on a notebook and replace
https://github.com/
withhttps://colab.research.google.com/github/
in the notebook URL or use this Chrome extension to do it with one click. - Sign into your Google account.
- Click the
COPY TO DRIVE
button on the toolbar. This will open the notebook on a new tab.
- Rename this new notebook by removing the
Copy of
part in the title. - Run the code, make changes, etc. and it's all automatically saved to you personal Google Drive.
- Make your changes and download the Google colab notebook as an .ipynb file.
- Go to https://github.com/GokuMohandas/practicalAI/tree/master/notebooks
- Click on
Upload files
.
- Upload the .ipynb file.
- Write a detailed commit title and message.
- Name your branch as appropriately.
- Click on
Propose changes
.